Neuro-Fuzzy and Soft Computing - A Computational Approach to Learning and Artificial Intelligence

Q1 Mathematics
Shiying Zhang, T. Sakulyeva, Evgeniy Pitukhin, S. Doguchaeva
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引用次数: 14

Abstract

Single approaches to soft computing have many limitations and disadvantages. Neural network modelling poses a challenge of architecture building, whilst fuzzy sets are characterized by problematic membership functions. The use of hybrid methods is, by contrast, a rather promising strategy. This study aims to develop a new prediction methodology by integrating Neuro-Fuzzy Systems (NFS) with a Neuro-Genetic Approach (NGA). Such a design combines the learning capacity of the neural networks and the ability of fuzzy systems to extract the linguistic knowledge. This proposal is expected to predict the suitability of parameters and models with fewer errors and high accuracy. The performance of this system is improved through the use of genetic algorithm for optimizing the neural network parameters such as the learning rate, network impulse, and the number of membership functions for each input variable. The proposed methodology was tested using electromyographic (EMG) data. The results showed high efficiency (92%) of the proposed hybrid technique.
神经模糊和软计算-学习和人工智能的计算方法
单一的软计算方法有许多局限性和缺点。神经网络建模对结构的构建提出了挑战,而模糊集的特点是有问题的隶属函数。相比之下,混合方法的使用是一个相当有前途的策略。本研究旨在将神经模糊系统(NFS)与神经遗传方法(NGA)相结合,开发一种新的预测方法。这种设计结合了神经网络的学习能力和模糊系统提取语言知识的能力。该方法有望以较小的误差和较高的精度预测参数和模型的适用性。通过使用遗传算法优化神经网络参数,如学习率、网络脉冲和每个输入变量的隶属函数数量,提高了系统的性能。采用肌电图(EMG)数据对提出的方法进行了测试。结果表明,该混合技术具有较高的效率(92%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Review of Automatic Control
International Review of Automatic Control Engineering-Control and Systems Engineering
CiteScore
2.70
自引率
0.00%
发文量
17
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